1 / 13

Abstract Access Control Models for Dynamic RDF Datasets

This paper discusses fine-grained access control models for RDF datasets and introduces abstract access control models for dynamic RDF datasets.

kortiz
Télécharger la présentation

Abstract Access Control Models for Dynamic RDF Datasets

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Abstract Access Control Models for Dynamic RDF Datasets IriniFundulaki CWI & FORTH-ICS Giorgos Flouris FORTH-ICS Vassilis Papakonstantinou FORTH-ICS & University of Crete European Data Forum 2012

  2. Controlling Access to RDF Data • Why RDF Data? • RDF is the de-facto standard for publishing data in the Linked Open Data Cloud • Public Government Data (US, UK, France, Austria, The Netherlands, … ) • E-Science (astronomy, life sciences, earth sciences) • Social Networks • DBPedia, Wikipedia, CIA World FactBook, … • Why Access Control? • Crucial for sensitive content since it ensures the selective exposure of information to different classes of users European Data Forum 2012

  3. Controlling Access to RDF Data • Fine-grainedAccess Control Model for RDF • focus at the RDF triple level • focus on read-only permissions • with support for RDFSinference to infer new knowledge • encodes how an access label has been computed • contributing triples • Implementation of a fine-grained, repository independent, portable across platforms access control frameworkon top of the MonetDB column store engine European Data Forum 2012

  4. s p o permission &a type Student allowed Student sc Person denied s p o permission &a type Person denied Access Control Annotations • Standard access control models associate a concrete access label to a triple • An implied RDF triple can be accessed if and only if all its implying triples can be accessed European Data Forum 2012

  5. allowed Access Control Annotations • In the case of any kind of update, the implied triples & their labels must be re-computed • An implied RDF triple can be accessed if and only if all its implying triples can be accessed s p o permission &a type Student allowed Student sc Person denied s p o permission type Person allowed denied &a the overhead can be substantial when updates occur frequently European Data Forum 2012

  6. Access Control Annotations • Annotation models are easy to handle but are not amenable to changes since there is no knowledge of the affected triples • Any change leads to the re-computation of inferred triples and their labels • if the access label of one triple changes • if a triple is deleted, modified or added • if the semantics according to which the labels of inferred triples are computed change • if the policy changes (a liberal policy becomes conservative) European Data Forum 2012

  7. s p o permission &a type Student l1 Student l2 sc Person s p o permission &a type Person l1⊙ l2 • l1 l2: abstract tokens • ⊙ : operator that encodes that inference was used to produce the inferred triple Abstract Access Control Models for RDF • Encode howthe label of an implied triple was computed • Triples are assigned abstract tokensandnot concrete values European Data Forum 2012

  8. A1 : (construct {?x firstName ?y} where {?x type Student }, l1) A2 : (construct {?x sc ?y}, l2) A3 : (construct {?x type Student },l3) Authorizations (Query, abstract token) Annotation: Computing the Access Labels • Triples are assigned labels through authorization queries • RDFS inference rules are applied to infer new knowledge s p o l l2 Person Student q1: sc Agent q2: Person sc l2 &a Student q3: type l3 q4: &a Alice firstName l1 l4 Agent q5: type class q6: sc Person Student l5 RDF quadruples European Data Forum 2012

  9. Annotation:Applying RDFS Inference Rules RDFS Inference: quadruple generating rules (A1, sc, A2, l1) (A2, sc, A3, l2) (A1, sc, A3, l1 ⊙l2) (&r1, type, A2, l1 ⊙l2) (&r1, type, A1, l1) (A1, sc, A2, l2) s p o l l s p o Person q1: l2 Student sc l2 ⊙ l2 Student sc Agent q8: Agent q2: Person l2 sc Student Agent sc q9: l5 ⊙ l2 &a Student q3: l3 type &a type Person q10: l3 ⊙ l2 Student q6: l5 sc Person &a Agent type q11: (l3 ⊙ l2) ⊙ l2 RDF quadruples (l5 ⊙ l2) ⊙ l2 &a type Agent q12: Inferred RDF quadruples European Data Forum 2012

  10. Evaluation: Assign Concrete Values to Abstract Expressions • Set of Concrete Tokens and a Mappingfrom abstract to concrete tokens • Set of Concrete operators that implement the abstract ones • Conflict resolution operator to resolve ambiguous labels • Access Function to decide when a triple is accessible European Data Forum 2012

  11. s p o permision l3 q11: &a type Student true q12: l2 Student sc Person false • l3maps to and l2maps to • ⊙ maps to logical conjunction false true and true false s p o permission &a type Person l3⊙ l2 Abstract Access Control Models for RDF • Use of concrete policies to assign concrete values to the abstract tokens and operators false European Data Forum 2012

  12. false true • l3maps to and l2maps to • ⊙ maps to logical disjunction false true or true false true Abstract Access Control Models for RDF: Updates • If a concrete policy changes, we need to re-compute the expressions s p o permision l3 q11: &a type Student q12: l2 Student sc Person s p o permission &a type Person l3⊙ l2 European Data Forum 2012

  13. Pros & Cons of Abstract Access Control Models • Pros: • The same application can experiment with different concrete policies over the same dataset • liberal vs conservative policies for different classes of users • Different applications can experiment with different concrete policies for the same data • In the case of updates there is no need re-compute the inferred triples • Cons: • overhead in the required storage space • algebraic expressions can become complex depending on the structure of the dataset European Data Forum 2012

More Related